We propose a novel denoising diffusion generative model for predicting nonlinear fluid fields named FluidDiff. By performing a diffusion process, the model is able to learn a complex representation of the high-dimensional dynamic system, and then Langevin sampling is used to generate predictions for the flow state under specified initial conditions. The model is trained with finite, discrete fluid simulation data. We demonstrate that our model has the capacity to model the distribution of simulated training data and that it gives accurate predictions on the test data. Without encoded prior knowledge of the underlying physical system, it shares competitive performance with other deep learning models for fluid prediction, which is promising for investigation on new computational fluid dynamics methods.
翻译:我们提出一个新的分解扩散基因模型,用于预测非线性流体田,名为流体Diff。模型通过进行扩散过程,能够了解高维动态系统的复杂表现,然后使用兰格文取样来预测在特定初始条件下的流动状态。模型经过有限、离散流体模拟数据的培训。我们证明我们的模型有能力模拟模拟培训数据的分布,对测试数据作出准确的预测。如果不事先对基本物理系统进行编码,它与其他深度的流体预测学习模型分享竞争性业绩,这有望对新的计算流体动态方法进行调查。